Detecting emotions in microblogs and social media posts has applications for industry, health, and security. However, there exists no microblog corpus with instances labeled for emotions for developing supervised systems. In this paper, we describe how we created such a corpus from Twitter posts using emotionword hashtags. We conduct experiments to show that the self-labeled hashtag annotations are consistent and match with the annotations of trained judges. We also show how the Twitter emotion corpus can be used to improve emotion classification accuracy in a different domain. Finally, we extract a word\u2013emotion association lexicon from this Twitter corpus, and show that it leads to significantly better results than the manually crafte...
Social media and microblog tools are increasingly used by individuals to express their feelings and ...
Automatic emotion detection in text is concerned with using natural language processing techniques t...
Hashtags in Twitter posts may carry dif-ferent semantic payloads. Their dual form (word and label) m...
Detecting emotions in microblogs and social media posts has applications for industry, health, and s...
People\u27s emotions can be gleaned from their text using machine learning techniques to build model...
We present a weakly supervised approach for learning hashtags, hashtag patterns, and phrases associa...
User generated content on Twitter (produced at an enormous rate of 340 million tweets per day) provi...
Affective computing is the study and development of devices that can recognize emotions through vari...
The automatic detection of emotions in Twitter posts is a challenging task due to the informal natur...
This paper presents a system that extracts information from automatically annotated tweets using wel...
Proceedings of: 11th Conference on Practical Applications of Agents and Multi-Agent Systems (PAAMS 1...
Research in Psychology have proposed frameworks that map emotion concepts with sentiment concepts. I...
In recent years many people have begun to express their thoughts and opinions on Twit-ter. Naturally...
Emotion classification can benefit from a larger pool of training data but manually expanding the e...
Abstract — In this paper, we use machine learning techniques to try to find the best possible soluti...
Social media and microblog tools are increasingly used by individuals to express their feelings and ...
Automatic emotion detection in text is concerned with using natural language processing techniques t...
Hashtags in Twitter posts may carry dif-ferent semantic payloads. Their dual form (word and label) m...
Detecting emotions in microblogs and social media posts has applications for industry, health, and s...
People\u27s emotions can be gleaned from their text using machine learning techniques to build model...
We present a weakly supervised approach for learning hashtags, hashtag patterns, and phrases associa...
User generated content on Twitter (produced at an enormous rate of 340 million tweets per day) provi...
Affective computing is the study and development of devices that can recognize emotions through vari...
The automatic detection of emotions in Twitter posts is a challenging task due to the informal natur...
This paper presents a system that extracts information from automatically annotated tweets using wel...
Proceedings of: 11th Conference on Practical Applications of Agents and Multi-Agent Systems (PAAMS 1...
Research in Psychology have proposed frameworks that map emotion concepts with sentiment concepts. I...
In recent years many people have begun to express their thoughts and opinions on Twit-ter. Naturally...
Emotion classification can benefit from a larger pool of training data but manually expanding the e...
Abstract — In this paper, we use machine learning techniques to try to find the best possible soluti...
Social media and microblog tools are increasingly used by individuals to express their feelings and ...
Automatic emotion detection in text is concerned with using natural language processing techniques t...
Hashtags in Twitter posts may carry dif-ferent semantic payloads. Their dual form (word and label) m...